{% extends 'base.html'%}
{% block head %}
{{ js_resources|safe}}
{{ css_resources|safe}}
{% endblock %}

{% block table %}
<div class="row">
    <div class="col-md-12 stretch-card">
        <div class="card">
            <div class="card-body" id="table">
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                    <h2 style="color:#144a74">数据分析故事总结</h2>
                </br>
                <p style="color: #302f4b">1、数据分析岗位需求南方多于北方，中部地区也有一定的发展潜力，岗位需求最高的5个城市分别是北上广深+杭州。</p>
                <p style="color: #302f4b">2、5大需求城市数据分析岗位的平均工资普遍在10k以上，需求最大且平均最低工资最高的城市是广州，同时杭州发展潜力巨大。</p>
                <p style="color: #302f4b">3、北京数据分析岗位是5大需求城市工资上限最高。</p>
                <p style="color: #302f4b">4、数据分析岗位民营公司占比最多，上市公司及国企次之，非欧美的外资公司岗位需求比欧美类型外资公司的需求要高。</p>
                <p style="color: #302f4b">5、数据分析岗位学历要求普遍为本科和硕士，大专以下学历想要进入公司从事数据分析岗位难度较大。</p>
                <p style="color: #302f4b">6、学历和岗位薪资基本成正比，学历越高，岗位平均薪资就越高。本科学历平均薪资可以达到14.1k/月。</p>
                <p style="color: #302f4b">7、岗位关键词基本涵盖了各大领域，其中互联网、计算机软件词频最高，与岗位关联度最强。建筑、交通、学术、保险的词频也较高，有一定的发展潜力。</p>
                <p style="color: #302f4b">8、公司规模与岗位需求基本成反比，比较多公司规模小的公司对数据分析岗位需求多。</p>
                </br>
                </p>
            </div>
        </div>
    </div>
</div>
{% endblock %}
